An efficient and fast method to calculate integral experimental correlation coefficients – S2Cor

2021 
Abstract Generating covariance matrices, for example for integral experimental data or a set of experiments in a validation suite, can become a heavily time and infrastructure consuming process. We propose a new Monte Carlo based method to derive covariances and the corresponding correlation coefficients. The method is based on a combination of Latin Hypercube sampling, Random Monte Carlo sampling and a scaling factor and reduces the calculation time significantly. We describe the method and compare exemplary results for some critical experiments with results from the Random Monte Carlo sampling only method. The proposed method is not limited to application to critical experiments but can generally replace any Monte Carlo approach to generate covariance matrices.
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